A note on optimum allocation in multivariate stratified sampling
M. G. M. Khan and M. J. Ahsan
The South Pacific Journal of Natural Science
21(1) 91 - 95
Published: 15 December 2003
Abstract
In stratified random sampling when several characteristics are to be estimated simultaneously, an allocation that is optimum for one characteristic may be far away from optimum for others. To resolve this conflict the authors formulate the problem of determining optimum compromise allocation as a nonlinear programming problem (NLPP). The allocation obtained is optimum in the sense that it minimizes the sum of weighted variances of the estimated population means of the characteristics subject to a fixed sampling cost. The formulated NLPP is treated as multistage decision problem and solved using dynamic programming technique. A numerical example is presented to illustrate the computational details.Keywords: Sample allocation, multivariate stratified random sampling, nonlinear programming problem, dynamic programming technique.
https://doi.org/10.1071/SP03017
© The University of the South Pacific 2003